QoE-Based Low-Delay Live Streaming Using Throughput Predictions
Konstantin Miller, Abdel-Karim Al-Tamimi, Adam Wolisz

TL;DR
This paper introduces LOLYPOP, a throughput prediction-based adaptation algorithm for low-latency live streaming over wireless networks, significantly improving video quality and flexibility compared to existing methods.
Contribution
The paper presents LOLYPOP, a novel low-latency adaptation algorithm that leverages throughput predictions and error estimates to enhance live streaming quality under strict latency constraints.
Findings
LOLYPOP achieves up to 3 times higher average video quality than FESTIVE.
It operates effectively with transport latency of a few seconds.
LOLYPOP offers a broader quality of experience space, allowing better customization.
Abstract
Recently, HTTP-based adaptive streaming has become the de facto standard for video streaming over the Internet. It allows clients to dynamically adapt media characteristics to network conditions in order to ensure a high quality of experience, that is, minimize playback interruptions, while maximizing video quality at a reasonable level of quality changes. In the case of live streaming, this task becomes particularly challenging due to the latency constraints. The challenge further increases if a client uses a wireless network, where the throughput is subject to considerable fluctuations. Consequently, live streams often exhibit latencies of up to 30 seconds. In the present work, we introduce an adaptation algorithm for HTTP-based live streaming called LOLYPOP (Low-Latency Prediction-Based Adaptation) that is designed to operate with a transport latency of few seconds. To reach this…
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Taxonomy
TopicsImage and Video Quality Assessment · Video Coding and Compression Technologies · Advanced Data Compression Techniques
